心律失常检测的多项逻辑回归分类模型

Prajitha. C, S. P, B. S
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引用次数: 0

摘要

在当今医学时代,心电图已被用来记录心脏活动,为各种心脏疾病的基本可视化提供依据。由于各种噪声的干扰,包括基线漂移、电力线干扰和运动伪影噪声,对心电信号特性分析进行有效的心律失常分类一直被认为是一个具有挑战性的问题。本研究通过多项逻辑回归(MLR)分类模型解决了这一挑战。该数学模型的建立是为了有效地去除各种噪声,提高心电信号中有效检测心律失常的分类率。在MLR中,采用分数小波变换对心电信号进行预处理,去除噪声,确定心电信号的QRS区间。从预处理信号中使用堆叠自编码器(SAE)来验证检索到的特征的维数,从而有效地预测和分类多种形式的心律失常。基于提取的心电数据特征,MLR分类模型获得最大分类比,以准确识别心律失常。实验结果表明,与传统算法相比,该算法的分类率提高了98.95%,噪声系数降低,信噪比达到35.7dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multinomial Logistic Regression Classification Model for Arrhythmia Detection
In the present medical era, Electrocardiography has been used to record heart activities for the basic visualization of various cardiac diseases. ECG signal properties analysis for effective arrhythmia classification has been considered a challenging issue due to the interruption of various sorts of noises that includes baseline wander, power line interference, and motion artifact noise. This challenge has been addressed in this research through the Multinomial logistic Regression (MLR) classification model. This mathematical model has been structured for the effective removal of various noises and to improve the classification ratio for effective arrhythmia detection from ECG signals. In MLR, Fractional Wavelet Transform is used for preprocessing of ECG signal for removing the noise and to determine the QRS interval from the ECG signal. From the Pre-processed signal Stacked Autoencoder (SAE) is used to validate the dimensionality of the retrieved features for effective prediction and classification of multiple forms of arrhythmias. Based on the extracted features of the ECG data MLR classification model obtains a maximum classification ratio for accurate arrhythmia identification. The experimental findings show an improved classification ratio of 98.95% with reduced noise factors, Signal to Noise Ratio (SNR) of 35.7dB when compared to conventional algorithms.
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